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Performance of Comprehensive Risk Adjustment for the Prediction of In-Hospital Events Using Administrative Healthcare Data: The Queralt Indices
Authors Monterde D, Cainzos-Achirica M, Cossio-Gil Y, García-Eroles L, Pérez-Sust P, Arrufat M, Calle C, Comin-Colet J, Velasco C
Received 23 August 2019
Accepted for publication 17 January 2020
Published 26 March 2020 Volume 2020:13 Pages 271—283
DOI https://doi.org/10.2147/RMHP.S228415
Checked for plagiarism Yes
Review by Single-blind
Peer reviewer comments 2
Editor who approved publication: Dr Kent Rondeau
Background: Accurate risk adjustment is crucial for
healthcare management and benchmarking.
Purpose: We
aimed to compare the performance of classic comorbidity functions (Charlson’s
and Elixhauser’s), of the All Patients Refined Diagnosis Related Groups
(APR-DRG), and of the Queralt Indices, a family of novel, comprehensive
comorbidity indices for the prediction of key clinical outcomes in hospitalized
patients.
Material and Methods: We conducted an observational, retrospective cohort study using
administrative healthcare data from 156,459 hospital discharges in Catalonia
(Spain) during 2018. Study outcomes were in-hospital death, long hospital stay,
and intensive care unit (ICU) stay. We evaluated the performance of the
following indices: Charlson’s and Elixhauser’s functions, Queralt’s Index for
secondary hospital discharge diagnoses (Queralt DxS), the overall Queralt’s
Index, which includes pre-existing comorbidities, in-hospital complications,
and principal discharge diagnosis (Queralt Dx), and the APR-DRG. Discriminative
ability was evaluated using the area under the curve (AUC), and measures of
goodness of fit were also computed. Subgroup analyses were conducted by
principal discharge diagnosis, by age, and type of admission.
Results: Queralt
DxS provided relevant risk adjustment information in a larger number of
patients compared to Charlson’s and Elixhauser’s functions, and outperformed
both for the prediction of the 3 study outcomes. Queralt Dx also outperformed
Charlson’s and Elixhauser’s indices, and yielded superior predictive ability
and goodness of fit compared to APR-DRG (AUC for in-hospital death 0.95 for
Queralt Dx, 0.77– 0.93 for all other indices; for ICU stay 0.84 for Queralt Dx,
0.73– 0.83 for all other indices). The performance of Queralt DxS was at least
as good as that of the APR-DRG in most principal discharge diagnosis subgroups.
Conclusion: Our
findings suggest that risk adjustment should go beyond pre-existing
comorbidities and include principal discharge diagnoses and in-hospital
complications. Validation of comprehensive risk adjustment tools such as the
Queralt indices in other settings is needed.
Keywords: benchmarking,
case-mix, comorbidity, discrimination, multimorbidity, Queralt’s indices, risk